Source
ICML
DATE OF PUBLICATION
07/13/2025
Authors
Andrei Polubarov Nikita Lyubaykin Alexander Derevyagin Ilya Zisman Denis Tarasov Alexander Nikulin Vladislav Kurenkov
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Vintix: Action Model via In-Context Reinforcement Learning

Abstract

In-Context Reinforcement Learning (ICRL) represents a promising paradigm for developing generalist agents that learn at inference time through trial-and-error interactions, analogous to how large language models adapt contextually, but with a focus on reward maximization. However, the scalability of ICRL beyond toy tasks and single-domain settings remains an open challenge. In this work, we present the first steps toward scaling ICRL by introducing a fixed, cross-domain model capable of learning behaviors through in-context reinforcement learning. Our results demonstrate that Algorithm Distillation, a framework designed to facilitate ICRL, offers a compelling and competitive alternative to expert distillation to construct versatile action models. These findings highlight the potential of ICRL as a scalable approach for generalist decision-making systems. Code to be released at this https URL

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